Big Data & Digital Marketing
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Big Data & Digital Marketing
Data analytics as the key to know your customers and offer them what they really want.
Curated by Luca Naso
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Rescooped by Luca Naso from Cloud Central
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Google Boosts Cloud Services To Tackle Big Data

Google Boosts Cloud Services To Tackle Big Data | Big Data & Digital Marketing | Scoop.it

 

At the Hadoop Summit in Brussels on Thursday (Apr 16th 2015), Google announced significant updates to two of its cloud services.


Via Peter Azzopardi
Luca Naso's insight:

I believe that the future of Data Analysis, Big Data and the like is in the cloud.

 

"Big data the cloud way means being more productive when building applications, with faster and better insights, without having to worry about the underlying infrastructure", said Google Product Manager William Vambenepe.

 

Google Data Flow is now in beta and publicly available to any software developer.

 

Google BigQuery got upgraded, now able to process 100k rows in a second.

Peter Azzopardi's curator insight, April 18, 2015 6:07 AM

"Today, nothing stands between you and the satisfaction of seeing your processing logic, applied in your choice of streaming or batch mode, executed via a fully managed processing service. Just write a program, submit it, and Cloud Dataflow will do the rest," Vambenepe said.

Joe Boulis's curator insight, April 19, 2015 10:32 PM

Google made major announcements at the Hadoop Summit in Brussels; including significant updates to Google Cloud Dataflow and Google BigQuery. Facilitating the processing of large quantities of data.

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Data science: 'Machines do analytics. Humans do analysis'

Data science: 'Machines do analytics. Humans do analysis' | Big Data & Digital Marketing | Scoop.it
Two leaders of Booz Allen's data science team talk talent, building a data science team and the machine-human link in analytics.
Luca Naso's insight:

In Data Science "talent" means to be "relentless in the face of failure"

 

Insights (aka Big Data Value) builds on Big Brains:

No machine can be a miracle cure. Humans have to find the patterns, ask the right questions and make the connections in the data.

Fàtima Galan's curator insight, December 17, 2014 3:48 AM

"Data science is a team sport and you need a diverse team to explore multiple angles."

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A Big Data Winter is waiting ahead

A Big Data Winter is waiting ahead | Big Data & Digital Marketing | Scoop.it
Big-data boondoggles and brain-inspired chips are just two of the things we’re really getting wrong
Luca Naso's insight:

Interview to IEEE Fellow Michael I. Jordan, Pehong Chen Distinguished Professor at the University of California, Berkeley.


1. Deep Learning has nothing to do with Neuroscience

People continue to infer that something involving neuroscience is behind deep learning, and that deep learning is taking advantage of an understanding of how the brain processes information, learns, makes decisions, or copes with large amounts of data. And that is just patently false.


For issues of higher cognition—how we perceive, how we remember, how we act—we have no idea how neurons are storing information, how they are computing, what the rules are, what the algorithms are, what the representations are, and the like.


So we are not yet in an era in which we can be using an understanding of the brain to guide us in the construction of intelligent systems.



3. A Big Data Winter is waiting ahead

When you have large amounts of data many of your inferences are likely to be false. It’s like having billions of monkeys typing. One of them will write Shakespeare.


A lot of people are building things hoping that they work, and sometimes they will. And in some sense, there’s nothing wrong with that; it’s exploratory. But society as a whole can’t tolerate that. Eventually, we have to give real guarantees. Civil engineers eventually learned to build bridges that were guaranteed to stand up.

So with big data, it will take decades, I suspect, to get a real engineering approach, so that you can say with some assurance that you are giving out reasonable answers and are quantifying the likelihood of errors.


If nothing changes, there will be a “big-data winter.” After a bubble, when people invested and a lot of companies overpromised without providing serious analysis, it will bust. And soon, in a two- to five-year span, people will say, “The whole big-data thing came and went. It died. It was wrong.”

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